Future of Artificial Intelligence in Surgery: A Narrative Review

被引:10
作者
Amin, Aamir [1 ]
Cardoso, Swizel Ann [2 ]
Suyambu, Jenisha [3 ]
Saboor, Hafiz Abdus [4 ]
Cardoso, Rayner P. [5 ]
Husnain, Ali [6 ]
Isaac, Natasha Varghese [7 ]
Backing, Haydee [8 ]
Mehmood, Dalia [9 ]
Mehmood, Rayner Maria [10 ]
Maslamani, Abdalkareem Nael Jameel [11 ]
机构
[1] Guys & St ThomasNHS Fdn Trust, Harefield Hosp, Cardiothorac Surg, London, England
[2] Univ Hosp Birmingham NHS Fdn Trust DC, Major Trauma Serv, Birmingham, England
[3] Univ Perpetual Help Syst Data, Jonelta Fdn Sch Med, Med, Las Pinas, Philippines
[4] Mayo Hosp, Internal Med, Lahore, Pakistan
[5] All India Inst Med Sci, Community & Family Med, Jodhpur, India
[6] Northwestern Univ, Radiol, Lahore, Pakistan
[7] Rajiv Gandhi Univ Hlth Sci, St Johns Med Coll Hosp, Med & Surg, Bengaluru, India
[8] Univ San Martin Porres, Med, Lima, Peru
[9] Fatima Jinnah Med Univ, Community Med, Lahore, Pakistan
[10] Shalamar Med & Dent Coll, Internal Med, Lahore, Pakistan
[11] Cairo Univ, Gen Surg, Cairo, Egypt
关键词
automated artificial intelligence (autoai); general thoracic surgery; general and vascular surgery; ortho surgery; black box; artificial intelligence in surgery; aritifical intelligence; surgery general; ABDOMINAL AORTIC-ANEURYSM; LEARNING-METHODS; NEURAL-NETWORKS; PREDICTION; RISK; CLASSIFICATION; SEGMENTATION; MANAGEMENT; SIGNATURE; MORTALITY;
D O I
10.7759/cureus.51631
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Artificial intelligence (AI) is the capability of a machine to execute cognitive processes that are typically considered to be functions of the human brain. It is the study of algorithms that enable machines to reason and perform mental tasks, including problem-solving, object and word recognition, and decision-making. Once considered science fiction, AI today is a fact and an increasingly prevalent subject in both academic and popular literature. It is expected to reshape medicine, benefiting both healthcare professionals and patients. Machine learning (ML) is a subset of AI that allows machines to learn and make predictions by recognizing patterns, thus empowering the medical team to deliver better care to patients through accurate diagnosis and treatment. ML is expanding its footprint in a variety of surgical specialties, including general surgery, ophthalmology, cardiothoracic surgery, and vascular surgery, to name a few. In recent years, we have seen AI make its way into the operating theatres. Though it has not yet been able to replace the surgeon, it has the potential to become a highly valuable surgical tool. Rest assured that the day is not far off when AI shall play a significant intraoperative role, a projection that is currently marred by safety concerns. This review aims to explore the present application of AI in various surgical disciplines and how it benefits both patients and physicians, as well as the current obstacles and limitations facing its seemingly unstoppable rise.
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页数:9
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